mvnormalTest - Powerful Tests for Multivariate Normality
A simple informative powerful test (mvnTest()) for
multivariate normality proposed by Zhou and Shao (2014)
<doi:10.1080/02664763.2013.839637>, which combines kurtosis
with Shapiro-Wilk test that is easy for biomedical researchers
to understand and easy to implement in all dimensions. This
package also contains some other multivariate normality tests
including Fattorini's FA test (faTest()), Mardia's skewness and
kurtosis test (mardia()), Henze-Zirkler's test (mhz()), Bowman
and Shenton's test (msk()), Royston’s H test (msw()), and
Villasenor-Alva and Gonzalez-Estrada's test (msw()). Empirical
power calculation functions for these tests are also provided.
In addition, this package includes some functions to generate
several types of multivariate distributions mentioned in Zhou
and Shao (2014).